全部 标题 作者
关键词 摘要

OALib Journal期刊
ISSN: 2333-9721
费用:99美元

查看量下载量

相关文章

更多...

Analysis of Gestational Diabetes Mellitus (GDM) and Its Impact on Maternal and Fetal Health: A Comprehensive Dataset Study Using Data Analytic Tool Power BI

DOI: 10.4236/jdaip.2024.122013, PP. 232-247

Keywords: Gestational Diabetes, Visualization, Data Analytics, Data Modelling, Pregnancy, Power BI

Full-Text   Cite this paper   Add to My Lib

Abstract:

Gestational Diabetes Mellitus (GDM) is a significant health concern affecting pregnant women worldwide. It is characterized by elevated blood sugar levels during pregnancy and poses risks to both maternal and fetal health. Maternal complications of GDM include an increased risk of developing type 2 diabetes later in life, as well as hypertension and preeclampsia during pregnancy. Fetal complications may include macrosomia (large birth weight), birth injuries, and an increased risk of developing metabolic disorders later in life. Understanding the demographics, risk factors, and biomarkers associated with GDM is crucial for effective management and prevention strategies. This research aims to address these aspects comprehensively through the analysis of a dataset comprising 600 pregnant women. By exploring the demographics of the dataset and employing data modeling techniques, the study seeks to identify key risk factors associated with GDM. Moreover, by analyzing various biomarkers, the research aims to gain insights into the physiological mechanisms underlying GDM and its implications for maternal and fetal health. The significance of this research lies in its potential to inform clinical practice and public health policies related to GDM. By identifying demographic patterns and risk factors, healthcare providers can better tailor screening and intervention strategies for pregnant women at risk of GDM. Additionally, insights into biomarkers associated with GDM may contribute to the development of novel diagnostic tools and therapeutic approaches. Ultimately, by enhancing our understanding of GDM, this research aims to improve maternal and fetal outcomes and reduce the burden of this condition on healthcare systems and society. However, it’s important to acknowledge the limitations of the dataset used in this study. Further research utilizing larger and more diverse datasets, perhaps employing advanced data analysis techniques such as Power BI, is warranted to corroborate and expand upon the findings of this research. This underscores the ongoing need for continued investigation into GDM to refine our understanding and improve clinical management strategies.

References

[1]  El-Rashidy, N., ElSayed, N.E., El-Ghamry, A. and Talaat, F.M. (2022) Prediction of Gestational Diabetes Based on Explainable Deep Learning and Fog Computing. Soft Computing, 26, 11435-11450.
https://doi.org/10.1007/s00500-022-07420-1
[2]  Masic, I. (2014) Five Periods in Development of Medical Informatics. Acta Informatica Medica, 22, 44-48.
[3]  Wang, F. and Stiglic, G. (2015) Data Analytics in Healthcare Informatics. 2015 International Conference on Healthcare Informatics, Dallas, TX, 21-23 October 2015, 444.
https://doi.org/10.1109/ICHI.2015.62
[4]  Awrahman, B.J., Aziz Fatah, C. and Hamaamin, M.Y. (2022) A Review of the Role and Challenges of Big Data in Healthcare Informatics and Analytics. Computational Intelligence and Neuroscience, 2022, Article ID 5317760.
https://doi.org/10.1155/2022/5317760
[5]  Rehman, A., Naz, S. and Razzak, I. (2022) Leveraging Big Data Analytics in Healthcare Enhancement: Trends, Challenges and Opportunities. Multimedia Systems, 28, 1339-1371.
https://doi.org/10.1007/s00530-020-00736-8
[6]  Razo-Azamar, M., et al. (2023) An Early Prediction Model for Gestational Diabetes Mellitus Based on Metabolomic Biomarkers. Diabetology & Metabolic Syndrome, 15, Article Number: 116.
https://doi.org/10.1186/s13098-023-01098-7
[7]  Belsti, Y., et al. (2023) Comparison of Machine Learning and Conventional Logistic Regression-Based Prediction Models for Gestational Diabetes in an Ethnically Diverse Population; the Monash GDM Machine Learning Model. International Journal of Medical Informatics, 179, 105228.
https://doi.org/10.1016/j.ijmedinf.2023.105228
[8]  Snyder, B.M., et al. (2020) Early Pregnancy Prediction of Gestational Diabetes Mellitus Risk Using Prenatal Screening Biomarkers in Nulliparous Women. Diabetes Research and Clinical Practice, 163, 108139.
https://doi.org/10.1016/j.diabres.2020.108139
[9]  Cooray, S.D., Boyle, J.A., Soldatos, G., Wijeyaratne, L.A. and Teede, H.J. (2019) Prognostic Prediction Models for Pregnancy Complications in Women with Gestational Diabetes: A Protocol for Systematic Review, Critical Appraisal and Meta-Analysis. Systematic Reviews, 8, Article Number: 270.
https://doi.org/10.1186/s13643-019-1151-0

Full-Text

Contact Us

service@oalib.com

QQ:3279437679

WhatsApp +8615387084133